Loop Closure From Two Views: Revisiting PGO for Scalable Trajectory Estimation Through Monocular Priors

(Visual) Simultaneous Localization and Mapping (SLAM) remains a fundamental challenge in enabling autonomous systems to navigate and understand large-scale environments. Traditional SLAM approaches struggle to balance efficiency and accuracy, particularly in large-scale settings where extensive computational resources are required for scene reconstruction and Bundle Adjustment (BA). However, this scene reconstruction, in the form of sparse pointclouds of visual landmarks, is often only used within the SLAM system because navigation and planning methods require different map representations. In this work, we therefore investigate a more scalable Visual SLAM (VSLAM) approach without reconstruction, mainly based on approaches for two-view loop closures. By restricting the map to a sparse keyframed pose graph without dense geometry representations, our ‘2GO’ system achieves efficient optimization with competitive absolute trajectory accuracy. In particular, we find that recent advancements in image matching and monocular depth priors enable very accurate trajectory optimization without BA. We conduct extensive experiments on diverse datasets, including large-scale scenarios, and provide a detailed analysis of the trade-offs between runtime, accuracy, and map size. Our results demonstrate that this streamlined approach supports real-time performance, scales well in map size and trajectory duration, and effectively broadens the capabilities of VSLAM for long-duration deployments to large environments.

  • Published in:
    IEEE Robotics and Automation Letters
  • Type:
    Article
  • Authors:
    Lim, Tian Yi; Sun, Boyang; Pollefeys, Marc; Blum, Hermann
  • Year:
    2026

Citation information

Lim, Tian Yi; Sun, Boyang; Pollefeys, Marc; Blum, Hermann: Loop Closure From Two Views: Revisiting PGO for Scalable Trajectory Estimation Through Monocular Priors, IEEE Robotics and Automation Letters, 2026, 1--8, January, Lim.etal.2026a,

Associated Lamarr Researchers

Blum Hermann - Lamarr Institute for Machine Learning (ML) and Artificial Intelligence (AI)

Jun. Prof. Dr. Hermann Blum

Principal Investigator Embodied AI to the profile